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Planetary Gear Faults Detection in Wind Turbine Gearbox Based on a Ten Years Historical Data From Three Wind Farms

机译:基于三年风电场的历史数据在风力涡轮机齿轮箱中检测行星齿轮故障

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Gear faults contribute to a significant portion of failures in wind turbine system. As such, condition monitoring and fault detection of these components assist in maintenance scheduling; hence, preventing catastrophic failures of the gearbox. This paper introduces a new hybrid fault detection approach to detect gear faults in wind turbines. to accomplish this task, vibration signals are collected and used to extract various time-domain features. Next, a Dynamic Principle Component Analysis (DPCA) is adaptively employed to identify failure dynamics by reducing the time-domain feature dimension. Following that, a Support Vector Machine (SVM) is implemented to detect and isolate gear faults. Experimental test studies with ten-year historical data of three wind farms in Canada are conducted. Test results indicate that the proposed hybrid approach performs superior compared to DPCA using Multilayer Perceptron (MLP) Neural Networks (NNs).
机译:齿轮故障有助于风力涡轮机系统的一部分故障。因此,这些组件的条件监控和故障检测有助于维护调度;因此,防止齿轮箱的灾难性失败。本文介绍了一种新的混合故障检测方法来检测风力涡轮机中的齿轮故障。为了完成此任务,收集振动信号并用于提取各种时域特征。接下来,通过减少时域特征维度,自适应地采用动态原理分析(DPCA)来识别失效动态。在此之后,实现了支持向量机(SVM)以检测和隔离齿轮故障。对加拿大三个风电场的十年历史数据进行了实验测试研究。测试结果表明,使用多层的Perceptron(MLP)神经网络(NNS),所提出的混合方法与DPCA相比表现出色。

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